AI Agents 相关度: 6/10

AI Lifecycle-Aware Feasibility Framework for Split-RIC Orchestration in NTN O-RAN

Daniele Tarchi
arXiv: 2603.23252v1 发布: 2026-03-24 更新: 2026-03-24

AI 摘要

研究NTN O-RAN中基于AI的分裂RIC架构可行性,分析不同部署场景下的生命周期能耗和延迟。

主要贡献

  • 提出了针对NTN O-RAN的分裂RIC架构可行性框架。
  • 对比了地面、LEO和GEO不同部署场景下的性能。
  • 推导了生命周期能耗和延迟的闭式表达式。

方法论

通过对不同部署场景进行建模,推导生命周期能耗和延迟公式,并进行数值敏感性分析,确定可行性区域。

原文摘要

Integrating Artificial Intelligence (AI) into Non-Terrestrial Networks (NTN) is constrained by the joint limits of satellite SWaP and feeder-link capacity, which directly impact O-RAN closed-loop control and model lifecycle management. This paper studies the feasibility of distributing the O-RAN control hierarchy across Ground, LEO, and GEO segments through a Split-RIC architecture. We compare three deployment scenarios: (i) ground-centric control with telemetry streaming, (ii) ground--LEO Split-RIC with on-board inference and store-and-forward learning, and (iii) GEO--LEO multi-layer control enabled by inter-satellite links. For each scenario, we derive closed-form expressions for lifecycle energy and lifecycle latency that account for training-data transfer, model dissemination, and near-real-time inference. Numerical sensitivity analysis over feeder-link conditions, model complexity, and orbital intermittency yields operator-relevant feasibility regions that delineate when on-board inference and non-terrestrial learning loops are physically preferable to terrestrial offloading.

标签

NTN O-RAN Split-RIC AI LEO GEO

arXiv 分类

cs.NI cs.AI